Splitcaltest

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Revision as of 10:45, 4 October 2012 by imported>Donal (→‎Options)
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Purpose

Splits randomly ordered data into calibration and test sets.

Synopsis

z = splitcaltest(model,options); %identifies model (calibration step)

Description

The calibration and test data are split up under the assumption that the data were acquired in a random sequence. The split is based on the scores from the input model. If a matrix or DataSet are passed in place of a model, it is assumed to contain the scores for the data.

Inputs

  • model = standard model structure from a factor-based model OR a double or DataSet object containing the scores to analyze.

Outputs

  • z = a structure containing the class and classlookup table.

Options

  • options = structure array with the following fields :
  • plots: [ 'none' | {'final'} ] governs level of plotting
  • algorithm: [ {'onion'} ]
  • nonion: [ {3} ] the number of 'external layers'
  • fraction: [ {0.66} ] fraction of data to be set as calibrations samples.

See Also

crossval, pca, pcr, preprocess.